2024
DOI: 10.1002/cpe.8266
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Research on insulator image segmentation and defect recognition technology based on U‐Net and YOLOv7

Jiawen Chen,
Chao Cai,
Fangbin Yan
et al.

Abstract: This study focuses on aerial images in power line inspection, using a small sample size and concentrating on accurately segmenting insulators in images and identifying potential “self‐explode” defects through deep learning methods. The research process consists of four key steps: image segmentation of insulators, identification of small connected regions, data augmentation of original samples, and detection of insulator defects using the YOLO v7 model. In this paper, due to the small sample size, sample expans… Show more

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